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Data-driven based fault prognosis for industrial systems: a concise overview

机译:基于数据驱动的工业系统故障预测:简要概述

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摘要

Fault prognosis is mainly referred to the estimation of the operating time before a failure occurs, which is vital for ensuring the stability, safety and long lifetime of degrading industrial systems. According to the results of fault prognosis, the maintenance strategy for underlying industrial systems can realize the conversion from passive maintenance to active maintenance. With the increased complexity and the improved automation level of industrial systems, fault prognosis techniques have become more and more indispensable. Particularly, the data-driven based prognosis approaches, which tend to find the hidden fault factors and determine the specific fault occurrence time of the system by analysing historical or real-time measurement data, gain great attention from different industrial sectors. In this context, the major task of this paper is to present a systematic overview of data-driven fault prognosis for industrial systems. Firstly, the characteristics of different prognosis methods are revealed with the data-based ones being highlighted. Moreover, based on the different data characteristics that exist in industrial systems, the corresponding fault prognosis methodologies are illustrated, with emphasis on analyses and comparisons of different prognosis methods. Finally, we reveal the current research trends and look forward to the future challenges in this field. This review is expected to serve as a tutorial and source of references for fault prognosis researchers.
机译:故障预测主要是指对故障发生之前的运行时间进行估计,这对于确保性能下降的工业系统的稳定性,安全性和长寿命至关重要。根据故障预测结果,基础工业系统的维护策略可以实现从被动维护到主动维护的转换。随着工业系统复杂性的提高和自动化水平的提高,故障诊断技术变得越来越不可或缺。特别地,基于数据驱动的预测方法倾向于通过分析历史或实时测量数据来发现隐藏的故障因素并确定系统的特定故障发生时间,这引起了不同行业的关注。在这种情况下,本文的主要任务是对工业系统中数据驱动的故障预测进行系统的概述。首先,揭示了不同预后方法的特点,突出了基于数据的预后方法。此外,根据工业系统中存在的不同数据特征,阐述了相应的故障预测方法,重点是对不同预测方法的分析和比较。最后,我们揭示了当前的研究趋势,并展望了该领域的未来挑战。预期该评论将作为故障预测研究人员的教程和参考资料来源。

著录项

  • 来源
    《Automatica Sinica, IEEE/CAA Journal of》 |2020年第2期|330-345|共16页
  • 作者

  • 作者单位

    Dalian Univ Technol Fac Elect Informat & Elect Engn Dalian 116024 Peoples R China;

    Dalian Univ Tech Minist Educ Key Lab Intelligent Control & Optimizat Ind Equip Dalian 116024 Peoples R China;

    Shanghai Ship & Shipping Res Inst State Key Lab Nav & Safety Technol Shanghai 200135 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Data-driven; fault prognosis; feature extraction; industrial systems;

    机译:数据驱动;故障预后特征提取;工业系统;

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